from tkinter import filedialog, Tk
from easygui import msgbox
import os
import re
import gradio as gr
import easygui
import shutil
import sys

from library.custom_logging import setup_logging

# Set up logging
log = setup_logging()

folder_symbol = '\U0001f4c2'  # 📂
refresh_symbol = '\U0001f504'  # 🔄
save_style_symbol = '\U0001f4be'  # 💾
document_symbol = '\U0001F4C4'   # 📄

# define a list of substrings to search for v2 base models
V2_BASE_MODELS = [
    'stabilityai/stable-diffusion-2-1-base',
    'stabilityai/stable-diffusion-2-base',
]

# define a list of substrings to search for v_parameterization models
V_PARAMETERIZATION_MODELS = [
    'stabilityai/stable-diffusion-2-1',
    'stabilityai/stable-diffusion-2',
]

# define a list of substrings to v1.x models
V1_MODELS = [
    'CompVis/stable-diffusion-v1-4',
    'runwayml/stable-diffusion-v1-5',
]

# define a list of substrings to search for
ALL_PRESET_MODELS = V2_BASE_MODELS + V_PARAMETERIZATION_MODELS + V1_MODELS

ENV_EXCLUSION = ['COLAB_GPU', 'RUNPOD_POD_ID']


def check_if_model_exist(
    output_name, output_dir, save_model_as, headless=False
):
    if headless:
        log.info(
            'Headless mode, skipping verification if model already exist... if model already exist it will be overwritten...'
        )
        return False

    if save_model_as in ['diffusers', 'diffusers_safetendors']:
        ckpt_folder = os.path.join(output_dir, output_name)
        if os.path.isdir(ckpt_folder):
            msg = f'A diffuser model with the same name {ckpt_folder} already exists. Do you want to overwrite it?'
            if not easygui.ynbox(msg, 'Overwrite Existing Model?'):
                log.info(
                    'Aborting training due to existing model with same name...'
                )
                return True
    elif save_model_as in ['ckpt', 'safetensors']:
        ckpt_file = os.path.join(output_dir, output_name + '.' + save_model_as)
        if os.path.isfile(ckpt_file):
            msg = f'A model with the same file name {ckpt_file} already exists. Do you want to overwrite it?'
            if not easygui.ynbox(msg, 'Overwrite Existing Model?'):
                log.info(
                    'Aborting training due to existing model with same name...'
                )
                return True
    else:
        log.info(
            'Can\'t verify if existing model exist when save model is set a "same as source model", continuing to train model...'
        )
        return False

    return False


def output_message(msg='', title='', headless=False):
    if headless:
        log.info(msg)
    else:
        msgbox(msg=msg, title=title)


def update_my_data(my_data):
    # Update the optimizer based on the use_8bit_adam flag
    use_8bit_adam = my_data.get('use_8bit_adam', False)
    my_data.setdefault('optimizer', 'AdamW8bit' if use_8bit_adam else 'AdamW')

    # Update model_list to custom if empty or pretrained_model_name_or_path is not a preset model
    model_list = my_data.get('model_list', [])
    pretrained_model_name_or_path = my_data.get(
        'pretrained_model_name_or_path', ''
    )
    if (
        not model_list
        or pretrained_model_name_or_path not in ALL_PRESET_MODELS
    ):
        my_data['model_list'] = 'custom'

    # Convert values to int if they are strings
    for key in ['epoch', 'save_every_n_epochs', 'lr_warmup']:
        value = my_data.get(key, 0)
        if isinstance(value, str) and value.strip().isdigit():
            my_data[key] = int(value)
        elif not value:
            my_data[key] = 0

    # Convert values to float if they are strings
    for key in ['noise_offset', 'learning_rate', 'text_encoder_lr', 'unet_lr']:
        value = my_data.get(key, 0)
        if isinstance(value, str) and value.strip().isdigit():
            my_data[key] = float(value)
        elif not value:
            my_data[key] = 0

    # Update LoRA_type if it is set to LoCon
    if my_data.get('LoRA_type', 'Standard') == 'LoCon':
        my_data['LoRA_type'] = 'LyCORIS/LoCon'

    # Update model save choices due to changes for LoRA and TI training
    if (
        my_data.get('LoRA_type') or my_data.get('num_vectors_per_token')
    ) and my_data.get('save_model_as') not in ['safetensors', 'ckpt']:
        message = 'Updating save_model_as to safetensors because the current value in the config file is no longer applicable to {}'
        if my_data.get('LoRA_type'):
            log.info(message.format('LoRA'))
        if my_data.get('num_vectors_per_token'):
            log.info(message.format('TI'))
        my_data['save_model_as'] = 'safetensors'

    return my_data


def get_dir_and_file(file_path):
    dir_path, file_name = os.path.split(file_path)
    return (dir_path, file_name)


# def has_ext_files(directory, extension):
#     # Iterate through all the files in the directory
#     for file in os.listdir(directory):
#         # If the file name ends with extension, return True
#         if file.endswith(extension):
#             return True
#     # If no extension files were found, return False
#     return False


def get_file_path(
    file_path='', default_extension='.json', extension_name='Config files'
):
    if (
        not any(var in os.environ for var in ENV_EXCLUSION)
        and sys.platform != 'darwin'
    ):
        current_file_path = file_path
        # log.info(f'current file path: {current_file_path}')

        initial_dir, initial_file = get_dir_and_file(file_path)

        # Create a hidden Tkinter root window
        root = Tk()
        root.wm_attributes('-topmost', 1)
        root.withdraw()

        # Show the open file dialog and get the selected file path
        file_path = filedialog.askopenfilename(
            filetypes=(
                (extension_name, f'*{default_extension}'),
                ('All files', '*.*'),
            ),
            defaultextension=default_extension,
            initialfile=initial_file,
            initialdir=initial_dir,
        )

        # Destroy the hidden root window
        root.destroy()

        # If no file is selected, use the current file path
        if not file_path:
            file_path = current_file_path
        current_file_path = file_path
        # log.info(f'current file path: {current_file_path}')

    return file_path


def get_any_file_path(file_path=''):
    if (
        not any(var in os.environ for var in ENV_EXCLUSION)
        and sys.platform != 'darwin'
    ):
        current_file_path = file_path
        # log.info(f'current file path: {current_file_path}')

        initial_dir, initial_file = get_dir_and_file(file_path)

        root = Tk()
        root.wm_attributes('-topmost', 1)
        root.withdraw()
        file_path = filedialog.askopenfilename(
            initialdir=initial_dir,
            initialfile=initial_file,
        )
        root.destroy()

        if file_path == '':
            file_path = current_file_path

    return file_path


def remove_doublequote(file_path):
    if file_path != None:
        file_path = file_path.replace('"', '')

    return file_path


# def set_legacy_8bitadam(optimizer, use_8bit_adam):
#     if optimizer == 'AdamW8bit':
#         # use_8bit_adam = True
#         return gr.Dropdown.update(value=optimizer), gr.Checkbox.update(
#             value=True, interactive=False, visible=True
#         )
#     else:
#         # use_8bit_adam = False
#         return gr.Dropdown.update(value=optimizer), gr.Checkbox.update(
#             value=False, interactive=False, visible=True
#         )


def get_folder_path(folder_path=''):
    if (
        not any(var in os.environ for var in ENV_EXCLUSION)
        and sys.platform != 'darwin'
    ):
        current_folder_path = folder_path

        initial_dir, initial_file = get_dir_and_file(folder_path)

        root = Tk()
        root.wm_attributes('-topmost', 1)
        root.withdraw()
        folder_path = filedialog.askdirectory(initialdir=initial_dir)
        root.destroy()

        if folder_path == '':
            folder_path = current_folder_path

    return folder_path


def get_saveasfile_path(
    file_path='', defaultextension='.json', extension_name='Config files'
):
    if (
        not any(var in os.environ for var in ENV_EXCLUSION)
        and sys.platform != 'darwin'
    ):
        current_file_path = file_path
        # log.info(f'current file path: {current_file_path}')

        initial_dir, initial_file = get_dir_and_file(file_path)

        root = Tk()
        root.wm_attributes('-topmost', 1)
        root.withdraw()
        save_file_path = filedialog.asksaveasfile(
            filetypes=(
                (f'{extension_name}', f'{defaultextension}'),
                ('All files', '*'),
            ),
            defaultextension=defaultextension,
            initialdir=initial_dir,
            initialfile=initial_file,
        )
        root.destroy()

        # log.info(save_file_path)

        if save_file_path == None:
            file_path = current_file_path
        else:
            log.info(save_file_path.name)
            file_path = save_file_path.name

        # log.info(file_path)

    return file_path


def get_saveasfilename_path(
    file_path='', extensions='*', extension_name='Config files'
):
    if (
        not any(var in os.environ for var in ENV_EXCLUSION)
        and sys.platform != 'darwin'
    ):
        current_file_path = file_path
        # log.info(f'current file path: {current_file_path}')

        initial_dir, initial_file = get_dir_and_file(file_path)

        root = Tk()
        root.wm_attributes('-topmost', 1)
        root.withdraw()
        save_file_path = filedialog.asksaveasfilename(
            filetypes=(
                (f'{extension_name}', f'{extensions}'),
                ('All files', '*'),
            ),
            defaultextension=extensions,
            initialdir=initial_dir,
            initialfile=initial_file,
        )
        root.destroy()

        if save_file_path == '':
            file_path = current_file_path
        else:
            # log.info(save_file_path)
            file_path = save_file_path

    return file_path


def add_pre_postfix(
    folder: str = '',
    prefix: str = '',
    postfix: str = '',
    caption_file_ext: str = '.caption',
) -> None:
    """
    Add prefix and/or postfix to the content of caption files within a folder.
    If no caption files are found, create one with the requested prefix and/or postfix.

    Args:
        folder (str): Path to the folder containing caption files.
        prefix (str, optional): Prefix to add to the content of the caption files.
        postfix (str, optional): Postfix to add to the content of the caption files.
        caption_file_ext (str, optional): Extension of the caption files.
    """

    if prefix == '' and postfix == '':
        return

    image_extensions = ('.jpg', '.jpeg', '.png', '.webp')
    image_files = [
        f for f in os.listdir(folder) if f.lower().endswith(image_extensions)
    ]

    for image_file in image_files:
        caption_file_name = os.path.splitext(image_file)[0] + caption_file_ext
        caption_file_path = os.path.join(folder, caption_file_name)

        if not os.path.exists(caption_file_path):
            with open(caption_file_path, 'w', encoding='utf8') as f:
                separator = ' ' if prefix and postfix else ''
                f.write(f'{prefix}{separator}{postfix}')
        else:
            with open(caption_file_path, 'r+', encoding='utf8') as f:
                content = f.read()
                content = content.rstrip()
                f.seek(0, 0)

                prefix_separator = ' ' if prefix else ''
                postfix_separator = ' ' if postfix else ''
                f.write(
                    f'{prefix}{prefix_separator}{content}{postfix_separator}{postfix}'
                )


def has_ext_files(folder_path: str, file_extension: str) -> bool:
    """
    Check if there are any files with the specified extension in the given folder.

    Args:
        folder_path (str): Path to the folder containing files.
        file_extension (str): Extension of the files to look for.

    Returns:
        bool: True if files with the specified extension are found, False otherwise.
    """
    for file in os.listdir(folder_path):
        if file.endswith(file_extension):
            return True
    return False


def find_replace(
    folder_path: str = '',
    caption_file_ext: str = '.caption',
    search_text: str = '',
    replace_text: str = '',
) -> None:
    """
    Find and replace text in caption files within a folder.

    Args:
        folder_path (str, optional): Path to the folder containing caption files.
        caption_file_ext (str, optional): Extension of the caption files.
        search_text (str, optional): Text to search for in the caption files.
        replace_text (str, optional): Text to replace the search text with.
    """
    log.info('Running caption find/replace')

    if not has_ext_files(folder_path, caption_file_ext):
        msgbox(
            f'No files with extension {caption_file_ext} were found in {folder_path}...'
        )
        return

    if search_text == '':
        return

    caption_files = [
        f for f in os.listdir(folder_path) if f.endswith(caption_file_ext)
    ]

    for caption_file in caption_files:
        with open(
            os.path.join(folder_path, caption_file), 'r', errors='ignore'
        ) as f:
            content = f.read()

        content = content.replace(search_text, replace_text)

        with open(os.path.join(folder_path, caption_file), 'w') as f:
            f.write(content)


def color_aug_changed(color_aug):
    if color_aug:
        msgbox(
            'Disabling "Cache latent" because "Color augmentation" has been selected...'
        )
        return gr.Checkbox.update(value=False, interactive=False)
    else:
        return gr.Checkbox.update(value=True, interactive=True)


def save_inference_file(output_dir, v2, v_parameterization, output_name):
    # List all files in the directory
    files = os.listdir(output_dir)

    # Iterate over the list of files
    for file in files:
        # Check if the file starts with the value of output_name
        if file.startswith(output_name):
            # Check if it is a file or a directory
            if os.path.isfile(os.path.join(output_dir, file)):
                # Split the file name and extension
                file_name, ext = os.path.splitext(file)

                # Copy the v2-inference-v.yaml file to the current file, with a .yaml extension
                if v2 and v_parameterization:
                    log.info(
                        f'Saving v2-inference-v.yaml as {output_dir}/{file_name}.yaml'
                    )
                    shutil.copy(
                        f'./v2_inference/v2-inference-v.yaml',
                        f'{output_dir}/{file_name}.yaml',
                    )
                elif v2:
                    log.info(
                        f'Saving v2-inference.yaml as {output_dir}/{file_name}.yaml'
                    )
                    shutil.copy(
                        f'./v2_inference/v2-inference.yaml',
                        f'{output_dir}/{file_name}.yaml',
                    )


def set_pretrained_model_name_or_path_input(
    model_list, pretrained_model_name_or_path, v2, v_parameterization
):
    # check if $v2 and $v_parameterization are empty and if $pretrained_model_name_or_path contains any of the substrings in the v2 list
    if str(model_list) in V2_BASE_MODELS:
        log.info('SD v2 model detected. Setting --v2 parameter')
        v2 = True
        v_parameterization = False
        pretrained_model_name_or_path = str(model_list)

    # check if $v2 and $v_parameterization are empty and if $pretrained_model_name_or_path contains any of the substrings in the v_parameterization list
    if str(model_list) in V_PARAMETERIZATION_MODELS:
        log.info(
            'SD v2 v_parameterization detected. Setting --v2 parameter and --v_parameterization'
        )
        v2 = True
        v_parameterization = True
        pretrained_model_name_or_path = str(model_list)

    if str(model_list) in V1_MODELS:
        v2 = False
        v_parameterization = False
        pretrained_model_name_or_path = str(model_list)

    if model_list == 'custom':
        if (
            str(pretrained_model_name_or_path) in V1_MODELS
            or str(pretrained_model_name_or_path) in V2_BASE_MODELS
            or str(pretrained_model_name_or_path) in V_PARAMETERIZATION_MODELS
        ):
            pretrained_model_name_or_path = ''
            v2 = False
            v_parameterization = False
    return model_list, pretrained_model_name_or_path, v2, v_parameterization


def set_v2_checkbox(model_list, v2, v_parameterization):
    # check if $v2 and $v_parameterization are empty and if $pretrained_model_name_or_path contains any of the substrings in the v2 list
    if str(model_list) in V2_BASE_MODELS:
        v2 = True
        v_parameterization = False

    # check if $v2 and $v_parameterization are empty and if $pretrained_model_name_or_path contains any of the substrings in the v_parameterization list
    if str(model_list) in V_PARAMETERIZATION_MODELS:
        v2 = True
        v_parameterization = True

    if str(model_list) in V1_MODELS:
        v2 = False
        v_parameterization = False

    return v2, v_parameterization


def set_model_list(
    model_list,
    pretrained_model_name_or_path,
    v2,
    v_parameterization,
):

    if not pretrained_model_name_or_path in ALL_PRESET_MODELS:
        model_list = 'custom'
    else:
        model_list = pretrained_model_name_or_path

    return model_list, v2, v_parameterization


###
### Gradio common GUI section
###


def gradio_config(headless=False):
    with gr.Accordion('Configuration file', open=False):
        with gr.Row():
            button_open_config = gr.Button(
                'Open 📂', elem_id='open_folder', visible=(not headless)
            )
            button_save_config = gr.Button(
                'Save 💾', elem_id='open_folder', visible=(not headless)
            )
            button_save_as_config = gr.Button(
                'Save as... 💾', elem_id='open_folder', visible=(not headless)
            )
            config_file_name = gr.Textbox(
                label='',
                placeholder="type the configuration file path or use the 'Open' button above to select it...",
                interactive=True,
            )
            button_load_config = gr.Button('Load 💾', elem_id='open_folder')
            config_file_name.change(
                remove_doublequote,
                inputs=[config_file_name],
                outputs=[config_file_name],
            )
    return (
        button_open_config,
        button_save_config,
        button_save_as_config,
        config_file_name,
        button_load_config,
    )


def get_pretrained_model_name_or_path_file(
    model_list, pretrained_model_name_or_path
):
    pretrained_model_name_or_path = get_any_file_path(
        pretrained_model_name_or_path
    )
    set_model_list(model_list, pretrained_model_name_or_path)


def gradio_source_model(
    save_model_as_choices=[
        'same as source model',
        'ckpt',
        'diffusers',
        'diffusers_safetensors',
        'safetensors',
    ],
    headless=False,
):
    with gr.Tab('Source model'):
        # Define the input elements
        with gr.Row():
            pretrained_model_name_or_path = gr.Textbox(
                label='Pretrained model name or path',
                placeholder='enter the path to custom model or name of pretrained model',
                value='runwayml/stable-diffusion-v1-5',
            )
            pretrained_model_name_or_path_file = gr.Button(
                document_symbol,
                elem_id='open_folder_small',
                visible=(not headless),
            )
            pretrained_model_name_or_path_file.click(
                get_any_file_path,
                inputs=pretrained_model_name_or_path,
                outputs=pretrained_model_name_or_path,
                show_progress=False,
            )
            pretrained_model_name_or_path_folder = gr.Button(
                folder_symbol,
                elem_id='open_folder_small',
                visible=(not headless),
            )
            pretrained_model_name_or_path_folder.click(
                get_folder_path,
                inputs=pretrained_model_name_or_path,
                outputs=pretrained_model_name_or_path,
                show_progress=False,
            )
            model_list = gr.Dropdown(
                label='Model Quick Pick',
                choices=[
                    'custom',
                    'stabilityai/stable-diffusion-2-1-base',
                    'stabilityai/stable-diffusion-2-base',
                    'stabilityai/stable-diffusion-2-1',
                    'stabilityai/stable-diffusion-2',
                    'runwayml/stable-diffusion-v1-5',
                    'CompVis/stable-diffusion-v1-4',
                ],
                value='runwayml/stable-diffusion-v1-5',
            )
            save_model_as = gr.Dropdown(
                label='Save trained model as',
                choices=save_model_as_choices,
                value='safetensors',
            )

        with gr.Row():
            v2 = gr.Checkbox(label='v2', value=False)
            v_parameterization = gr.Checkbox(
                label='v_parameterization', value=False
            )
            v2.change(
                set_v2_checkbox,
                inputs=[model_list, v2, v_parameterization],
                outputs=[v2, v_parameterization],
                show_progress=False,
            )
            v_parameterization.change(
                set_v2_checkbox,
                inputs=[model_list, v2, v_parameterization],
                outputs=[v2, v_parameterization],
                show_progress=False,
            )
        model_list.change(
            set_pretrained_model_name_or_path_input,
            inputs=[
                model_list,
                pretrained_model_name_or_path,
                v2,
                v_parameterization,
            ],
            outputs=[
                model_list,
                pretrained_model_name_or_path,
                v2,
                v_parameterization,
            ],
            show_progress=False,
        )
        # Update the model list and parameters when user click outside the button or field
        pretrained_model_name_or_path.change(
            set_model_list,
            inputs=[
                model_list,
                pretrained_model_name_or_path,
                v2,
                v_parameterization,
            ],
            outputs=[
                model_list,
                v2,
                v_parameterization,
            ],
            show_progress=False,
        )
    return (
        pretrained_model_name_or_path,
        v2,
        v_parameterization,
        save_model_as,
        model_list,
    )


def gradio_training(
    learning_rate_value='1e-6',
    lr_scheduler_value='constant',
    lr_warmup_value='0',
):
    with gr.Row():
        train_batch_size = gr.Slider(
            minimum=1,
            maximum=64,
            label='Train batch size',
            value=1,
            step=1,
        )
        epoch = gr.Number(label='Epoch', value=1, precision=0)
        save_every_n_epochs = gr.Number(
            label='Save every N epochs', value=1, precision=0
        )
        caption_extension = gr.Textbox(
            label='Caption Extension',
            placeholder='(Optional) Extension for caption files. default: .caption',
        )
    with gr.Row():
        mixed_precision = gr.Dropdown(
            label='Mixed precision',
            choices=[
                'no',
                'fp16',
                'bf16',
            ],
            value='fp16',
        )
        save_precision = gr.Dropdown(
            label='Save precision',
            choices=[
                'float',
                'fp16',
                'bf16',
            ],
            value='fp16',
        )
        num_cpu_threads_per_process = gr.Slider(
            minimum=1,
            maximum=os.cpu_count(),
            step=1,
            label='Number of CPU threads per core',
            value=2,
        )
        seed = gr.Textbox(label='Seed', placeholder='(Optional) eg:1234')
        cache_latents = gr.Checkbox(label='Cache latents', value=True)
        cache_latents_to_disk = gr.Checkbox(
            label='Cache latents to disk', value=False
        )
    with gr.Row():
        learning_rate = gr.Number(
            label='Learning rate', value=learning_rate_value
        )
        lr_scheduler = gr.Dropdown(
            label='LR Scheduler',
            choices=[
                'adafactor',
                'constant',
                'constant_with_warmup',
                'cosine',
                'cosine_with_restarts',
                'linear',
                'polynomial',
            ],
            value=lr_scheduler_value,
        )
        lr_warmup = gr.Slider(
            label='LR warmup (% of steps)',
            value=lr_warmup_value,
            minimum=0,
            maximum=100,
            step=1,
        )
        optimizer = gr.Dropdown(
            label='Optimizer',
            choices=[
                'AdamW',
                'AdamW8bit',
                'Adafactor',
                'DAdaptation',
                'DAdaptAdaGrad',
                'DAdaptAdam',
                'DAdaptAdan',
                'DAdaptAdanIP',
                'DAdaptAdamPreprint',
                'DAdaptLion',
                'DAdaptSGD',
                'Lion',
                'Lion8bit',
                'Prodigy',
                'SGDNesterov',
                'SGDNesterov8bit',
            ],
            value='AdamW8bit',
            interactive=True,
        )
    with gr.Row():
        optimizer_args = gr.Textbox(
            label='Optimizer extra arguments',
            placeholder='(Optional) eg: relative_step=True scale_parameter=True warmup_init=True',
        )
    return (
        learning_rate,
        lr_scheduler,
        lr_warmup,
        train_batch_size,
        epoch,
        save_every_n_epochs,
        mixed_precision,
        save_precision,
        num_cpu_threads_per_process,
        seed,
        caption_extension,
        cache_latents,
        cache_latents_to_disk,
        optimizer,
        optimizer_args,
    )

def get_int_or_default(kwargs, key, default_value=0):
    value = kwargs.get(key, default_value)
    if isinstance(value, int):
        return value
    elif isinstance(value, str):
        return int(value)
    elif isinstance(value, float):
        return int(value)
    else:
        log.info(f'{key} is not an int, float or a string, setting value to {default_value}')
        return default_value
    
def get_float_or_default(kwargs, key, default_value=0.0):
    value = kwargs.get(key, default_value)
    if isinstance(value, float):
        return value
    elif isinstance(value, int):
        return float(value)
    elif isinstance(value, str):
        return float(value)
    else:
        log.info(f'{key} is not an int, float or a string, setting value to {default_value}')
        return default_value

def get_str_or_default(kwargs, key, default_value=""):
    value = kwargs.get(key, default_value)
    if isinstance(value, str):
        return value
    elif isinstance(value, int):
        return str(value)
    elif isinstance(value, str):
        return str(value)
    else:
        return default_value

def run_cmd_training(**kwargs):
    run_cmd = ''
    
    learning_rate = kwargs.get("learning_rate", "")
    if learning_rate:
        run_cmd += f' --learning_rate="{learning_rate}"'
    
    lr_scheduler = kwargs.get("lr_scheduler", "")
    if lr_scheduler:
        run_cmd += f' --lr_scheduler="{lr_scheduler}"'
    
    lr_warmup_steps = kwargs.get("lr_warmup_steps", "")
    if lr_warmup_steps:
        if lr_scheduler == 'constant':
            log.info('Can\'t use LR warmup with LR Scheduler constant... ignoring...')
        else:
            run_cmd += f' --lr_warmup_steps="{lr_warmup_steps}"'
    
    train_batch_size = kwargs.get("train_batch_size", "")
    if train_batch_size:
        run_cmd += f' --train_batch_size="{train_batch_size}"'
    
    max_train_steps = kwargs.get("max_train_steps", "")
    if max_train_steps:
        run_cmd += f' --max_train_steps="{max_train_steps}"'
    
    save_every_n_epochs = kwargs.get("save_every_n_epochs")
    if save_every_n_epochs:
        run_cmd += f' --save_every_n_epochs="{int(save_every_n_epochs)}"'
    
    mixed_precision = kwargs.get("mixed_precision", "")
    if mixed_precision:
        run_cmd += f' --mixed_precision="{mixed_precision}"'
    
    save_precision = kwargs.get("save_precision", "")
    if save_precision:
        run_cmd += f' --save_precision="{save_precision}"'
    
    seed = kwargs.get("seed", "")
    if seed != '':
        run_cmd += f' --seed="{seed}"'
    
    caption_extension = kwargs.get("caption_extension", "")
    if caption_extension:
        run_cmd += f' --caption_extension="{caption_extension}"'
    
    cache_latents = kwargs.get('cache_latents')
    if cache_latents:
        run_cmd += ' --cache_latents'
    
    cache_latents_to_disk = kwargs.get('cache_latents_to_disk')
    if cache_latents_to_disk:
        run_cmd += ' --cache_latents_to_disk'
    
    optimizer_type = kwargs.get("optimizer", "AdamW")
    run_cmd += f' --optimizer_type="{optimizer_type}"'
    
    optimizer_args = kwargs.get("optimizer_args", "")
    if optimizer_args != '':
        run_cmd += f' --optimizer_args {optimizer_args}'
    
    return run_cmd


def gradio_advanced_training(headless=False):
    def noise_offset_type_change(noise_offset_type):
        if noise_offset_type == 'Original':
            return (gr.Group.update(visible=True), gr.Group.update(visible=False))
        else:
            return (gr.Group.update(visible=False), gr.Group.update(visible=True))
    with gr.Row():
        additional_parameters = gr.Textbox(
            label='Additional parameters',
            placeholder='(Optional) Use to provide additional parameters not handled by the GUI. Eg: --some_parameters "value"',
        )
    with gr.Row():
        save_every_n_steps = gr.Number(
            label='Save every N steps',
            value=0,
            precision=0,
            info='(Optional) The model is saved every specified steps',
        )
        save_last_n_steps = gr.Number(
            label='Save last N steps',
            value=0,
            precision=0,
            info='(Optional) Save only the specified number of models (old models will be deleted)',
        )
        save_last_n_steps_state = gr.Number(
            label='Save last N states',
            value=0,
            precision=0,
            info='(Optional) Save only the specified number of states (old models will be deleted)',
        )
    with gr.Row():
        keep_tokens = gr.Slider(
            label='Keep n tokens', value='0', minimum=0, maximum=32, step=1
        )
        clip_skip = gr.Slider(
            label='Clip skip', value='1', minimum=1, maximum=12, step=1
        )
        max_token_length = gr.Dropdown(
            label='Max Token Length',
            choices=[
                '75',
                '150',
                '225',
            ],
            value='75',
        )
        full_fp16 = gr.Checkbox(
            label='Full fp16 training (experimental)', value=False
        )
    with gr.Row():
        gradient_checkpointing = gr.Checkbox(
            label='Gradient checkpointing', value=False
        )
        shuffle_caption = gr.Checkbox(label='Shuffle caption', value=False)
        persistent_data_loader_workers = gr.Checkbox(
            label='Persistent data loader', value=False
        )
        mem_eff_attn = gr.Checkbox(
            label='Memory efficient attention', value=False
        )
    with gr.Row():
        # This use_8bit_adam element should be removed in a future release as it is no longer used
        # use_8bit_adam = gr.Checkbox(
        #     label='Use 8bit adam', value=False, visible=False
        # )
        xformers = gr.Checkbox(label='Use xformers', value=True)
        color_aug = gr.Checkbox(label='Color augmentation', value=False)
        flip_aug = gr.Checkbox(label='Flip augmentation', value=False)
        min_snr_gamma = gr.Slider(
            label='Min SNR gamma', value=0, minimum=0, maximum=20, step=1
        )
    with gr.Row():
        bucket_no_upscale = gr.Checkbox(
            label="Don't upscale bucket resolution", value=True
        )
        bucket_reso_steps = gr.Slider(
            label='Bucket resolution steps', value=64, minimum=1, maximum=128
        )
        random_crop = gr.Checkbox(
            label='Random crop instead of center crop', value=False
        )
    
    with gr.Row():
        noise_offset_type = gr.Dropdown(
            label='Noise offset type',
            choices=[
                'Original',
                'Multires',
            ],
            value='Original',
        )
        with gr.Row(visible=True) as noise_offset_original:
            noise_offset = gr.Slider(
                label='Noise offset',
                value=0,
                minimum=0,
                maximum=1,
                step=0.01,
                info='recommended values are 0.05 - 0.15',
            )
            adaptive_noise_scale = gr.Slider(
                label='Adaptive noise scale',
                value=0,
                minimum=-1,
                maximum=1,
                step=0.001,
                info='(Experimental, Optional) Since the latent is close to a normal distribution, it may be a good idea to specify a value around 1/10 the noise offset.',
            )
        with gr.Row(visible=False) as noise_offset_multires:
            multires_noise_iterations = gr.Slider(
                label='Multires noise iterations',
                value=0,
                minimum=0,
                maximum=64,
                step=1,
                info='enable multires noise (recommended values are 6-10)',
            )
            multires_noise_discount = gr.Slider(
                label='Multires noise discount',
                value=0,
                minimum=0,
                maximum=1,
                step=0.01,
                info='recommended values are 0.8. For LoRAs with small datasets, 0.1-0.3',
            )
        noise_offset_type.change(
            noise_offset_type_change,
            inputs=[noise_offset_type],
            outputs=[noise_offset_original, noise_offset_multires]
        )
    with gr.Row():
        caption_dropout_every_n_epochs = gr.Number(
            label='Dropout caption every n epochs', value=0
        )
        caption_dropout_rate = gr.Slider(
            label='Rate of caption dropout', value=0, minimum=0, maximum=1
        )
        vae_batch_size = gr.Slider(
            label='VAE batch size', minimum=0, maximum=32, value=0, step=1
        )
    with gr.Row():
        save_state = gr.Checkbox(label='Save training state', value=False)
        resume = gr.Textbox(
            label='Resume from saved training state',
            placeholder='path to "last-state" state folder to resume from',
        )
        resume_button = gr.Button(
            '📂', elem_id='open_folder_small', visible=(not headless)
        )
        resume_button.click(
            get_folder_path,
            outputs=resume,
            show_progress=False,
        )
        max_train_epochs = gr.Textbox(
            label='Max train epoch',
            placeholder='(Optional) Override number of epoch',
        )
        max_data_loader_n_workers = gr.Textbox(
            label='Max num workers for DataLoader',
            placeholder='(Optional) Override number of epoch. Default: 8',
            value='0',
        )
    with gr.Row():
        wandb_api_key = gr.Textbox(
            label='WANDB API Key',
            value='',
            placeholder='(Optional)',
            info='Users can obtain and/or generate an api key in the their user settings on the website: https://wandb.ai/login',
        )
        use_wandb = gr.Checkbox(
            label='WANDB Logging',
            value=False,
            info='If unchecked, tensorboard will be used as the default for logging.',
        )
        scale_v_pred_loss_like_noise_pred = gr.Checkbox(
            label='Scale v prediction loss',
            value=False,
            info='Only for SD v2 models. By scaling the loss according to the time step, the weights of global noise prediction and local noise prediction become the same, and the improvement of details may be expected.',
        )
    return (
        # use_8bit_adam,
        xformers,
        full_fp16,
        gradient_checkpointing,
        shuffle_caption,
        color_aug,
        flip_aug,
        clip_skip,
        mem_eff_attn,
        save_state,
        resume,
        max_token_length,
        max_train_epochs,
        max_data_loader_n_workers,
        keep_tokens,
        persistent_data_loader_workers,
        bucket_no_upscale,
        random_crop,
        bucket_reso_steps,
        caption_dropout_every_n_epochs,
        caption_dropout_rate,
        noise_offset_type,
        noise_offset,
        adaptive_noise_scale,
        multires_noise_iterations,
        multires_noise_discount,
        additional_parameters,
        vae_batch_size,
        min_snr_gamma,
        save_every_n_steps,
        save_last_n_steps,
        save_last_n_steps_state,
        use_wandb,
        wandb_api_key,
        scale_v_pred_loss_like_noise_pred,
    )


def run_cmd_advanced_training(**kwargs):
    run_cmd = ''
    
    max_train_epochs = kwargs.get("max_train_epochs", "")
    if max_train_epochs:
        run_cmd += f' --max_train_epochs={max_train_epochs}'
        
    max_data_loader_n_workers = kwargs.get("max_data_loader_n_workers", "")
    if max_data_loader_n_workers:
        run_cmd += f' --max_data_loader_n_workers="{max_data_loader_n_workers}"'
    
    max_token_length = int(kwargs.get("max_token_length", 75))
    if max_token_length > 75:
        run_cmd += f' --max_token_length={max_token_length}'
        
    clip_skip = int(kwargs.get("clip_skip", 1))
    if clip_skip > 1:
        run_cmd += f' --clip_skip={clip_skip}'
        
    resume = kwargs.get("resume", "")
    if resume:
        run_cmd += f' --resume="{resume}"'
        
    keep_tokens = int(kwargs.get("keep_tokens", 0))
    if keep_tokens > 0:
        run_cmd += f' --keep_tokens="{keep_tokens}"'
        
    caption_dropout_every_n_epochs = int(kwargs.get("caption_dropout_every_n_epochs", 0))
    if caption_dropout_every_n_epochs > 0:
        run_cmd += f' --caption_dropout_every_n_epochs="{caption_dropout_every_n_epochs}"'
    
    caption_dropout_rate = float(kwargs.get("caption_dropout_rate", 0))
    if caption_dropout_rate > 0:
        run_cmd += f' --caption_dropout_rate="{caption_dropout_rate}"'
        
    vae_batch_size = int(kwargs.get("vae_batch_size", 0))
    if vae_batch_size > 0:
        run_cmd += f' --vae_batch_size="{vae_batch_size}"'
        
    bucket_reso_steps = int(kwargs.get("bucket_reso_steps", 64))
    run_cmd += f' --bucket_reso_steps={bucket_reso_steps}'
        
    save_every_n_steps = int(kwargs.get("save_every_n_steps", 0))
    if save_every_n_steps > 0:
        run_cmd += f' --save_every_n_steps="{save_every_n_steps}"'
        
    save_last_n_steps = int(kwargs.get("save_last_n_steps", 0))
    if save_last_n_steps > 0:
        run_cmd += f' --save_last_n_steps="{save_last_n_steps}"'
        
    save_last_n_steps_state = int(kwargs.get("save_last_n_steps_state", 0))
    if save_last_n_steps_state > 0:
        run_cmd += f' --save_last_n_steps_state="{save_last_n_steps_state}"'
        
    min_snr_gamma = int(kwargs.get("min_snr_gamma", 0))
    if min_snr_gamma >= 1:
        run_cmd += f' --min_snr_gamma={min_snr_gamma}'
    
    save_state = kwargs.get('save_state')
    if save_state:
        run_cmd += ' --save_state'
        
    mem_eff_attn = kwargs.get('mem_eff_attn')
    if mem_eff_attn:
        run_cmd += ' --mem_eff_attn'
    
    color_aug = kwargs.get('color_aug')
    if color_aug:
        run_cmd += ' --color_aug'
    
    flip_aug = kwargs.get('flip_aug')
    if flip_aug:
        run_cmd += ' --flip_aug'
    
    shuffle_caption = kwargs.get('shuffle_caption')
    if shuffle_caption:
        run_cmd += ' --shuffle_caption'
    
    gradient_checkpointing = kwargs.get('gradient_checkpointing')
    if gradient_checkpointing:
        run_cmd += ' --gradient_checkpointing'
    
    full_fp16 = kwargs.get('full_fp16')
    if full_fp16:
        run_cmd += ' --full_fp16'
    
    xformers = kwargs.get('xformers')
    if xformers:
        run_cmd += ' --xformers'
    
    persistent_data_loader_workers = kwargs.get('persistent_data_loader_workers')
    if persistent_data_loader_workers:
        run_cmd += ' --persistent_data_loader_workers'
    
    bucket_no_upscale = kwargs.get('bucket_no_upscale')
    if bucket_no_upscale:
        run_cmd += ' --bucket_no_upscale'
    
    random_crop = kwargs.get('random_crop')
    if random_crop:
        run_cmd += ' --random_crop'
        
    scale_v_pred_loss_like_noise_pred = kwargs.get('scale_v_pred_loss_like_noise_pred')
    if scale_v_pred_loss_like_noise_pred:
        run_cmd += ' --scale_v_pred_loss_like_noise_pred'
        
    noise_offset_type = kwargs.get('noise_offset_type', 'Original')
    if noise_offset_type == 'Original':
        noise_offset = float(kwargs.get("noise_offset", 0))
        if noise_offset > 0:
            run_cmd += f' --noise_offset={noise_offset}'
        
        adaptive_noise_scale = float(kwargs.get("adaptive_noise_scale", 0))
        if adaptive_noise_scale != 0 and noise_offset > 0:
            run_cmd += f' --adaptive_noise_scale={adaptive_noise_scale}'
    else:
        multires_noise_iterations = int(kwargs.get("multires_noise_iterations", 0))
        if multires_noise_iterations > 0:
            run_cmd += f' --multires_noise_iterations="{multires_noise_iterations}"'
        
        multires_noise_discount = float(kwargs.get("multires_noise_discount", 0))
        if multires_noise_discount > 0:
            run_cmd += f' --multires_noise_discount="{multires_noise_discount}"'
    
    additional_parameters = kwargs.get("additional_parameters", "")
    if additional_parameters:
        run_cmd += f' {additional_parameters}'
    
    use_wandb = kwargs.get('use_wandb')
    if use_wandb:
        run_cmd += ' --log_with wandb'
    
    wandb_api_key = kwargs.get("wandb_api_key", "")
    if wandb_api_key:
        run_cmd += f' --wandb_api_key="{wandb_api_key}"'
        
    return run_cmd

def verify_image_folder_pattern(folder_path):
    false_response = True # temporarily set to true to prevent stopping training in case of false positive
    true_response = True

    # Check if the folder exists
    if not os.path.isdir(folder_path):
        log.error(f"The provided path '{folder_path}' is not a valid folder. Please follow the folder structure documentation found at docs\image_folder_structure.md ...")
        return false_response

    # Create a regular expression pattern to match the required sub-folder names
    # The pattern should start with one or more digits (\d+) followed by an underscore (_)
    # After the underscore, it should match one or more word characters (\w+), which can be letters, numbers, or underscores
    # Example of a valid pattern matching name: 123_example_folder
    pattern = r'^\d+_\w+'

    # Get the list of sub-folders in the directory
    subfolders = [
        os.path.join(folder_path, subfolder)
        for subfolder in os.listdir(folder_path)
        if os.path.isdir(os.path.join(folder_path, subfolder))
    ]

    # Check the pattern of each sub-folder
    matching_subfolders = [subfolder for subfolder in subfolders if re.match(pattern, os.path.basename(subfolder))]

    # Print non-matching sub-folders
    non_matching_subfolders = set(subfolders) - set(matching_subfolders)
    if non_matching_subfolders:
        log.error(f"The following folders do not match the required pattern <number>_<text>: {', '.join(non_matching_subfolders)}")
        log.error(f"Please follow the folder structure documentation found at docs\image_folder_structure.md ...")
        return false_response

    # Check if no sub-folders exist
    if not matching_subfolders:
        log.error(f"No image folders found in {folder_path}. Please follow the folder structure documentation found at docs\image_folder_structure.md ...")
        return false_response

    log.info(f'Valid image folder names found in: {folder_path}')
    return true_response
